glm-ocr-tableOfficial skill for recognizing and extracting tables from images and PDFs into Markdown format using ZhiPu GLM-OCR API. Supports complex tables, merged cells...
Install via ClawdBot CLI:
clawdbot install jaredforreal/glm-ocr-tableGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Calls external URL not in known-safe list
https://github.com/zai-org/GLM-OCR/tree/main/skills/glmocr-tableAudited Apr 18, 2026 · audit v1.0
Generated May 6, 2026
Extract tables from scanned financial statements, invoices, or balance sheets to automate data entry into accounting software. The skill handles complex merged cells common in financial reports.
Convert invoice tables from images or PDFs into editable Markdown or Excel format, enabling quick reconciliation and integration with enterprise resource planning systems.
Extract experimental results, statistical tables, and comparison data from research paper PDFs or screenshots, facilitating meta-analysis and data aggregation.
Digitize tables from historical printed documents, forms, or manuals to populate databases and enable searchable archives in government or corporate settings.
Offer the GLM-OCR skill as a monthly subscription service to businesses needing regular table extraction, with tiered pricing based on API call volume.
Provide a pay-per-use or batch pricing model for one-time document conversion projects, targeting law firms, accounting agencies, and researchers.
Package the skill as a plugin for accounting or ERP software, charging a licensing fee per user or per installation, reducing manual data entry costs.
💬 Integration Tip
Set the ZHIPU_API_KEY globally in openclaw.json's env.vars to share across Zhipu skills; for batch processing, loop through file paths in a script calling the CLI.
Scored May 6, 2026
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